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and simulation of RNA transport and organization in developing cells, and parameter inference and identifiability for biophysics experiments. The work will be performed in a cross-disciplinary setting
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Duke University Department of Biostatistics and Bioinformatics is seeking a highly motivated and detail-oriented Post-Doctoral Associate to join our interdisciplinary team focused on developing
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available in the Schmid lab, Duke University Biology Department. The research objective for this position is to investigate the function and evolution of transcription networks that regulate extreme stress
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-Residence for a one-year appointment in AY 2026-2027 (9 months beginning August 1, 2026 and ending June 1, 2027). The Humanist-in-Residence will participate in the seminar meetings while also developing a
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an integral member of the Chidley laboratory where your primary responsibility as a postdoctoral researcher will be to design and conduct independent and collaborative experiments. You will develop and apply
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for projects examining questions in cardiovascular disease using extremely large data sets comprised of routinely-collected clinical data · Developing and maintaining requirements for access to Truveta Data and
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is generally preparatory for a full time academicor research career. The appointment is not part of a clinical training program, unless research training under the supervision of a senior mentor is the
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is generally preparatory for a full time academicor research career. The appointment is not part of a clinical training program, unless research training under the supervision of a senior mentor is the
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, and behavioral measures. · Collect, process, and analyze multimodal datasets, including neural, physiological, and motion-tracking signals. · Develop and refine research protocols and methodologies in
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Systems Modeling. This position focuses on leveraging and developing new equation learning methods, such as Physics-Informed Neural Networks (PINNs), Biologically Informed Neural Networks (BINNs), and